基于cfd的空气感应喷嘴性能评估:与AI集成进行预测建模

IF 7.9 Q1 ENGINEERING, MULTIDISCIPLINARY
Jeekeun Lee , Hamada Mohmed Abdelmotalib
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引用次数: 0

摘要

空气感应喷嘴通常用于农业环境,以减少化学物质的漂移,内部流体动力学对其效率起着至关重要的作用。然而,内部流动的实验研究经常受到尺寸限制的阻碍。本研究旨在采用计算流体力学(CFD)和人工智能方法相结合的方法,确定空气感应喷嘴的最佳设计参数,以实现指定的气液比(ALR)。通过计算流体动力学(CFD)分析和人工智能(AI)建模,评估了文丘里风入口直径、风道长度、混合室长度、v形切角和喷嘴入口直径等几何因素的影响。结果表明,设计参数的细微变化明显影响喷嘴内两相流和由此产生的气液比。一个最佳的文丘里管入口直径7毫米被发现生产目标气液比为0.00055时加上喉咙直径1.4毫米,7毫米的混合室长度,气道1.5毫米的长度,一个进口喷嘴直径3毫米,和一个楔形掏槽32°角的重要性排名强调,文丘里进气口直径是最有影响力的因素(35%),与混合室长度和喷嘴入口直径的贡献同样(20%)。这些结果为改进空气感应喷嘴性能提供了实用的设计建议,并展示了将CFD与AI集成在喷嘴开发和农业喷洒方法中的价值。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CFD-based evaluation of air induction nozzle performance: Integration with AI for predictive modeling
Air induction nozzles are commonly utilized in agricultural settings to reduce chemical drift, with internal fluid dynamics playing a critical role in their efficiency. However, experimental investigation of internal flows is often hindered by dimensional constraints. This study aims to identify optimal design parameters for air-induction nozzles to achieve a specified air-to-liquid ratio (ALR), employing a combined approach of computational fluid dynamics (CFD) and artificial intelligence methods. The impacts of several geometric factors, including the venturi air inlet diameter, length of air passage, mixing chamber length, V-cut angle, and nozzle inlet diameter, were assessed through computational fluid dynamics (CFD) analyses and AI modeling. The findings demonstrated that subtle variations in the design parameters distinctly influenced the internal two-phase flow and the resulting air-liquid ratio within the nozzle. An optimum venturi inlet diameter of 7 mm was found to produce the target air-liquid ratio of 0.00055 when combined with a throat diameter of 1.4 mm, a mixing chamber length of 7 mm, air passage length of 1.5 mm, an inlet nozzle diameter of 3 mm, and a V-cut angle of 32° The importance ranking highlighted that the venturi inlet air diameter was the most influential factor (35 %), with mixing chamber length and nozzle inlet diameter contributing equally (20 % each). These results offer practical design recommendations for refining air induction nozzle performance and demonstrate the value of integrating CFD with AI to enhance nozzle development and agricultural spraying methods.
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来源期刊
Results in Engineering
Results in Engineering Engineering-Engineering (all)
CiteScore
5.80
自引率
34.00%
发文量
441
审稿时长
47 days
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